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Alternating direction method of multipliers for strictly convex quadratic programs: Optimal parameter selection

机译:严格凸二次程序的乘子交替方向方法:最优参数选择

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We consider an approach for solving strictly convex quadratic programs (QPs) with general linear inequalities by the alternating direction method of multipliers (ADMM). In particular, we focus on the application of ADMM to the QPs of constrained Model Predictive Control (MPC). After introducing our ADMM iteration, we provide a proof of convergence closely related to the theory of maximal monotone operators. The proof relies on a general measure to monitor the rate of convergence and hence to characterize the optimal step size for the iterations. We show that the identified measure converges at a Q-linear rate while the iterates converge at a 2-step Q-linear rate. This result allows us to relax some of the existing assumptions in optimal step size selection, that currently limit the applicability to the QPs of MPC. The results are validated through a large public benchmark set of QPs of MPC for controlling a four tank process.
机译:我们考虑一种通过乘数的交替方向法(ADMM)解决具有一般线性不等式的严格凸二次规划(QP)的方法。特别是,我们专注于ADMM在约束模型预测控制(MPC)的QP中的应用。介绍完ADMM迭代后,我们提供了与最大单调算符理论密切相关的收敛证明。证明依赖于一种通用措施来监视收敛速度,从而表征迭代的最佳步长。我们表明,所确定的度量以Q线性速率收敛,而迭代以2步Q线性速率收敛。此结果使我们可以放宽一些最佳步长选择的现有假设,这些假设当前限制了MPC QP的适用性。通过控制MPC的大型公共基准测试程序集(MPP)验证了结果。

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